import os
import os.path as osp
import re
import subprocess
import sys
import time
from concurrent.futures import ThreadPoolExecutor
from functools import partial
from threading import Lock
from typing import Any, Dict, List, Tuple

import mmengine
import numpy as np
from mmengine.config import ConfigDict
from mmengine.device import is_npu_available
from tqdm import tqdm

from opencompass.registry import RUNNERS, TASKS
from opencompass.utils import get_logger, model_abbr_from_cfg

from .base import BaseRunner


def get_command_template(gpu_ids: List[int]) -> str:
    """Format command template given available gpu ids."""
    if is_npu_available():
        tmpl = 'ASCEND_RT_VISIBLE_DEVICES=' + ','.join(str(i) for i in gpu_ids)
        tmpl += ' & {task_cmd}'
    elif sys.platform == 'win32':  # Always return win32 for Windows
        # use command in Windows format
        tmpl = 'set CUDA_VISIBLE_DEVICES=' + ','.join(str(i) for i in gpu_ids)
        tmpl += ' & {task_cmd}'
    else:
        tmpl = 'CUDA_VISIBLE_DEVICES=' + ','.join(str(i) for i in gpu_ids)
        tmpl += ' {task_cmd}'
    return tmpl


@RUNNERS.register_module()
class LocalRunner(BaseRunner):
    """Local runner. Start tasks by local python.

    Args:
        task (ConfigDict): Task type config.
        max_num_workers (int): Max number of workers to run in parallel.
            Defaults to 16.
        max_workers_per_gpu (int): Max number of workers to run for one GPU.
            Defaults to 1.
        debug (bool): Whether to run in debug mode.
        lark_bot_url (str): Lark bot url.
    """

    def __init__(self,
                 task: ConfigDict,
                 max_num_workers: int = 16,
                 debug: bool = False,
                 max_workers_per_gpu: int = 1,
                 lark_bot_url: str = None,
                 **kwargs):
        super().__init__(task=task, debug=debug, lark_bot_url=lark_bot_url)
        self.max_num_workers = max_num_workers
        self.max_workers_per_gpu = max_workers_per_gpu
        logger = get_logger()
        for k, v in kwargs.items():
            logger.warning(f'Ignored argument in {self.__module__}: {k}={v}')

    def launch(self, tasks: List[Dict[str, Any]]) -> List[Tuple[str, int]]:
        """Launch multiple tasks.

        Args:
            tasks (list[dict]): A list of task configs, usually generated by
                Partitioner.

        Returns:
            list[tuple[str, int]]: A list of (task name, exit code).
        """

        status = []
        import torch

        if is_npu_available():
            visible_devices = 'ASCEND_RT_VISIBLE_DEVICES'
            device_nums = torch.npu.device_count()
        else:
            visible_devices = 'CUDA_VISIBLE_DEVICES'
            device_nums = torch.cuda.device_count()
        if visible_devices in os.environ:
            all_gpu_ids = [
                int(i)
                for i in re.findall(r'(?<!-)\d+', os.getenv(visible_devices))
            ]
        else:
            all_gpu_ids = list(range(device_nums))

        if self.debug:
            for task in tasks:
                task = TASKS.build(dict(cfg=task, type=self.task_cfg['type']))
                task_name = task.name
                num_gpus = task.num_gpus
                assert len(all_gpu_ids) >= num_gpus
                # get cmd
                mmengine.mkdir_or_exist('tmp/')
                param_file = f'tmp/{os.getpid()}_params.py'
                try:
                    task.cfg.dump(param_file)
                    # if use torchrun, restrict it behaves the same as non
                    # debug mode, otherwise, the torchrun will use all the
                    # available resources which might cause inconsistent
                    # behavior.
                    if len(all_gpu_ids) > num_gpus and num_gpus > 0:
                        get_logger().warning(f'Only use {num_gpus} GPUs for '
                                             f'total {len(all_gpu_ids)} '
                                             'available GPUs in debug mode.')
                    tmpl = get_command_template(all_gpu_ids[:num_gpus])
                    cmd = task.get_command(cfg_path=param_file, template=tmpl)
                    # run in subprocess if starts with torchrun etc.
                    if 'python3 ' in cmd or 'python ' in cmd:
                        # If it is an infer type task do not reload if
                        # the current model has already been loaded.
                        if 'infer' in self.task_cfg.type.lower():
                            # If a model instance already exists,
                            # do not reload it.
                            task.run(cur_model=getattr(self, 'cur_model',
                                                       None),
                                     cur_model_abbr=getattr(
                                         self, 'cur_model_abbr', None))
                            self.cur_model = task.model
                            self.cur_model_abbr = model_abbr_from_cfg(
                                task.model_cfg)
                        else:
                            task.run()
                    else:
                        subprocess.run(cmd, shell=True, text=True)
                finally:
                    os.remove(param_file)
                status.append((task_name, 0))
        else:
            if len(all_gpu_ids) > 0:
                gpus = np.zeros(max(all_gpu_ids) + 1, dtype=np.uint)
                gpus[all_gpu_ids] = self.max_workers_per_gpu
            else:
                gpus = np.array([], dtype=np.uint)

            pbar = tqdm(total=len(tasks))
            lock = Lock()

            def submit(task, index):
                task = TASKS.build(dict(cfg=task, type=self.task_cfg['type']))
                num_gpus = task.num_gpus
                assert len(gpus) >= num_gpus

                while True:
                    lock.acquire()
                    if sum(gpus > 0) >= num_gpus:
                        gpu_ids = np.where(gpus)[0][:num_gpus]
                        gpus[gpu_ids] -= 1
                        lock.release()
                        break
                    lock.release()
                    time.sleep(1)

                if num_gpus > 0:
                    tqdm.write(f'launch {task.name} on GPU ' +
                               ','.join(map(str, gpu_ids)))
                else:
                    tqdm.write(f'launch {task.name} on CPU ')

                res = self._launch(task, gpu_ids, index)
                pbar.update()

                with lock:
                    gpus[gpu_ids] += 1

                return res

            with ThreadPoolExecutor(
                    max_workers=self.max_num_workers) as executor:
                status = executor.map(submit, tasks, range(len(tasks)))

        return status

    def _launch(self, task, gpu_ids, index):
        """Launch a single task.

        Args:
            task (BaseTask): Task to launch.

        Returns:
            tuple[str, int]: Task name and exit code.
        """

        task_name = task.name

        # Dump task config to file
        mmengine.mkdir_or_exist('tmp/')
        param_file = f'tmp/{os.getpid()}_{index}_params.py'
        try:
            task.cfg.dump(param_file)
            tmpl = get_command_template(gpu_ids)
            get_cmd = partial(task.get_command,
                              cfg_path=param_file,
                              template=tmpl)
            cmd = get_cmd()

            logger = get_logger()
            logger.debug(f'Running command: {cmd}')

            # Run command
            out_path = task.get_log_path(file_extension='out')
            mmengine.mkdir_or_exist(osp.split(out_path)[0])
            stdout = open(out_path, 'w', encoding='utf-8')

            result = subprocess.run(cmd,
                                    shell=True,
                                    text=True,
                                    stdout=stdout,
                                    stderr=stdout)

            if result.returncode != 0:
                logger.error(f'task {task_name} fail, see\n{out_path}')
        finally:
            # Clean up
            os.remove(param_file)
        return task_name, result.returncode
